| Literature DB >> 35242022 |
Yan Liu1, Jiawei Tian1, Rongrong Hu1, Bo Yang1, Shan Liu1, Lirong Yin2, Wenfeng Zheng1.
Abstract
Endoscopic imaging plays a very important role in the diagnosis and treatment of lesions. However, the imaging range of endoscopes is small, which may affect the doctors' judgment on the scope and details of lesions. Image mosaic technology can solve the problem well. In this paper, an improved feature-point pair purification algorithm based on SIFT (Scale invariant feature transform) is proposed. Firstly, the K-nearest neighbor-based feature point matching algorithm is used for rough matching. Then RANSAC (Random Sample Consensus) method is used for robustness tests to eliminate mismatched point pairs. The mismatching rate is greatly reduced by combining the two methods. Then, the image transformation matrix is estimated, and the image is determined. The seamless mosaic of endoscopic images is completed by matching the relationship. Finally, the proposed algorithm is verified by real endoscopic image and has a good effect.Entities:
Keywords: K-nearest; RANSAC; SIFT algorithm; endoscope; feature point matching; image mosaic
Year: 2022 PMID: 35242022 PMCID: PMC8886433 DOI: 10.3389/fnbot.2022.840594
Source DB: PubMed Journal: Front Neurorobot ISSN: 1662-5218 Impact factor: 2.650
Figure 1Flow chart of improved SIFT algorithm.
Figure 2The first matching result of feature points.
Comparison of purification algorithms for feature point matching.
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| 1 | 500/411 | 305/280 | 242/234 |
| 2 | 471/377 | 310/283 | 253/248 |
| 3 | 446/355 | 321/290 | 252/246 |
| 4 | 500/417 | 285/255 | 258/251 |
| 5 | 435/346 | 310/279 | 249/240 |
| 6 | 452/365 | 298/265 | 240/233 |
| 7 | 489/391 | 293/261 | 250/242 |
| 8 | 493/398 | 317/280 | 245/235 |
| Average value | 80.7% | 89.9% | 96.9% |
Figure 3Results of initial screening of matching pairs.
Figure 4The result after removing the mismatch.
Figure 5Initial matching results of feature points.
Figure 7The result of eliminating mismatches by improved purification algorithm.
Figure 6Result of RANSAC after removing mismatches.
Comparison of purification algorithms for feature point matching.
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| 1 | 305/244 | 153/137 | 98/94 |
| 2 | 308/249 | 151/133 | 100/97 |
| 3 | 312/251 | 156/139 | 103/99 |
| 4 | 300/241 | 147/131 | 95/91 |
| 5 | 315/253 | 158/142 | 107/104 |
| 6 | 299/239 | 149/134 | 99/95 |
| 7 | 303/242 | 152/135 | 102/99 |
| 8 | 307/248 | 151/132 | 101/96 |
| Average value | 80.3% | 89.0% | 96.2% |
Figure 8Two endoscopic images to be spliced. (A) Reference image; (B) image to be registered.
Figure 9The result of the improved SIFT algorithm.